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Published February 2014 | public
Journal Article

Feature-Preserving Surface Reconstruction and Simplification from Defect-Laden Point Sets

Abstract

We introduce a robust and feature-capturing surface reconstruction and simplification method that turns an input point set into a low triangle-count simplicial complex. Our approach starts with a (possibly non-manifold) simplicial complex filtered from a 3D Delaunay triangulation of the input points. This initial approximation is iteratively simplified based on an error metric that measures, through optimal transport, the distance between the input points and the current simplicial complex—both seen as mass distributions. Our approach is shown to exhibit both robustness to noise and outliers, as well as preservation of sharp features and boundaries. Our new feature-sensitive metric between point sets and triangle meshes can also be used as a post-processing tool that, from the smooth output of a reconstruction method, recovers sharp features and boundaries present in the initial point set.

Additional Information

© 2013 Springer Science+Business Media New York. Published online: 24 January 2013. This work was funded by the European Research Council (ERC Starting Grant "Robust Geometry Processing", Grant agreement 257474). We also thank the National Science Foundation for partial support through the CCF grant 1011944.

Additional details

Created:
August 22, 2023
Modified:
October 25, 2023